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Challenges in the Modernization of Statistical Production Process

Challenges in the Modernization of Statistical Production Process. Professor Paul Cheung National University of Singapore. Two Critical Questions. Are we happy with the current production process and the products? Do we need to save money, increase productivity, improve information value

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Challenges in the Modernization of Statistical Production Process

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  1. Challenges in the Modernization of Statistical Production Process Professor Paul Cheung National University of Singapore

  2. Two Critical Questions • Are we happy with the current production process and the products? • Do we need to save money, increase productivity, improve information value • How can we improve this? • improving quality, timeliness, marketing, usefulness, credibility, relevance, impact

  3. Review: Statistical Production Process (I) Measurement Framework • Defining the Domain - eg: Tourism: expenditure on product/services • International Standards • International Manual on Tourism Statistics • Metadata: Definitions and Explanations

  4. Review: Statistical Production Process (II) Data Collection Instruments and Processes • How to collect? • questionnaire, administrative sources, active or passive sensors, unmanned devices • What is the process? - pre-arranged interviews, random choice, internet collection, sms, fax, automated devices

  5. Review: Statistical Production Process (III) Data Editing, Analysis and Archival • Editing: manual or automatic, level of precision • Analysis: pre-determined or data-mining • Archival: protocol for storage and retrieval

  6. Review: Statistical Production Process (IV) Output Production • Types of output: hard copy, soft copy, internet • Media Mode: press briefing, interview, circular • Interpretation and Explanation

  7. Generic Framework on Statistical Production Process • Global statistical community desires a generic framework to review statistical production process • International agreed modules on each of the production process with technical specifications • Conference of European Statisticians leading this work. Two models proposed.

  8. Generic Statistical Business Production Model (GSBPM)

  9. Generic Statistical Information Model (GSIM)

  10. GSIM and GSBPM

  11. Drivers for Modernization • Rapid advancement in technology - internet, geospatial, video, speed, server space, sensors • Changing attitudes of respondents and users - Respondents less cooperative, - Users demand timely, relevant data • Evolving information value-chain - Need to compete and establish information value

  12. A. Modernizing Data Collection • Traditional surveys less emphasized. Too time consuming. Too slow; • Multi-mode approach: internet, call center, administrative source, fax, sms, sensors; • Active or passive data collection; • Back-end system support and integrative environment important;

  13. Mobile Phone Positioning Data for Tourism Statistics Source: Mobile Telephones and Mobile Positioning data as source for statistics: Estonian Experiences, Ahas et. Al. (2011)

  14. Korea Internet Census Public Campaign Preparation Address DB, Household list, Housing DB Pull & Push Strategy Create Internet Access Code Give Internet Access Code Intent to participate Thank You Note (e-mail) No Confirm Yes Electronic management Fill Out the Form Automatic editing Yes Re-contact those who haven’t completed the form No Finished? Yes • Send SMS to encourage • response DB

  15. Internet Census Security e-Census System Internet Router External Firewall WEB Firewall WAS Firewall DB Firewall Web Firewall External Network Internal Firewall Internet EXT WEB WEB WAS DB User Security Encoding SSL WEB Sever WAS Sever DB Sever WEB Sever User Security (Level 1) Network Security (Level 2) Web Service (Level 3) Server Security (Level 4) DB Security (Level 5) PC Security Web Service Security Security OS Encoding Data Access Control • PC keyboard • Web browser • No capture • Encoding SSL • WebFirewall • Controlling accesses to server • Encoding personal • information • Separating internal and external network • Control irregular • traffic

  16. B: Modernizing User Engagement • Recognized importance of consulting users extensively and systematically • UK Example: - Measuring ‘national well-being’ - 175 events, 2750 people, 34000 responses • Australia Example: - measuring ‘aspirations and progress’ : - advisory panel, social media, national forum, government workshops, international review

  17. C: Modernizing Spatial Reference • Recognized importance of location-based information and pervasive use in devices • Statisticians use ‘Metric’; geospatial information use ‘polygons’ as basic unit. • Need a common language through geo-coding; All statistical data should be geo-coded • UNSC considered ‘Statistical-spatial framework’ in 2013 session

  18. Spatial Data Analysis Source: Alan Smith

  19. 3-D Sub Population Analysis 2000 2010

  20. 25 Smith St = x,y: 35.5676, 135.6587 Location Information Framework Aggregated to Local Government area or higher Analysis and aggregation across geographies Geocoded unit level data Aggregated to suburb or postcode Location information at address level

  21. D. Modernizing Quality Assurance • Quality assurance becomes more important especially after the Mexico/Greece case; • European Commission puts strong emphasis with special mandate given to Eurostat; • UNSC approved National Quality Assurance Framework with 19 dimensions in 2012 grouped under 4 headings: a) the statistical system, b) the institutional arrangement, c) managing statistical process, d) managing statistical output

  22. The QualityDiamond • Management perspective • Methodologyperspective Relevance Accuracy Timeliness Punctuality Accessibility Clarity Comparability Coherence (Eurostat Quality Dimensions, 2011) Specifications Coverage Sampling Nonresponse Measurement Processing Costs Technology Ethics Timeliness PRB Question order effects Mode effects Cross-cultural effects New Frontiers for Stastictal Data Collection, 2 November 2012, Geneva

  23. The QualityDiamond:The Management Perspective 6 Managing customer demands and expectations Non-response 1 Costs 2 Timeliness 3 Flexibility of process planning 4 Innovation of process 5 Response Burden 7 Planning staff 8 Systems and tools 9 Culture Mixed-mode effects Data Collection Strategy effects New Frontiers for Stastictal Data Collection, 2 November 2012, Geneva

  24. The QualityDiamond:The MethodologyPerspective Accuracy Non-response Measurement Coverage Sampling Response Burden Innovation of data collection methods Mixed-mode effects Questionnaire effects Data Collection Strategy effects New Frontiers for Stastictal Data Collection, 2 November 2012, Geneva

  25. E. Modernizing Data Exchange • Modern statistical system relies heavily on data exchange; no more ‘silo’ • How to transfer data effectively? • SDMX has become global standard for data exchange, led by 7 agencies • UN adopts SDMX as global exchange standard

  26. Bilateral Exchange

  27. Gateway Exchange

  28. Data/Metadata-Sharing Exchange query/retrieval RSS or SDMX Notification Registration of Data Source Data/Metadata Reporters Data/Metadata Consumers

  29. F. Modernizing Archival and Retrieval • Data can be used anytime, anywhere. • Data Archival : Principle of Immutability. - meta data important, data catalog • Data retrieval : new standards emerging in health care or financial industries. Indexing and search capabilities • TheWorld Bank has developed special tool kits

  30. Italy Data Archival System

  31. G. Modernizing Dissemination • Data dissemination has undergone the most changes with the Open Data era • Much more will happen in the future as technology rapidly changes • But resistance is still there. More political than technological.

  32. The Old Rule William Farr (1807-1883) “You complain that your report would be dry[without the graphics]… …THE DRYER THE BETTER. Statistics should be the dryest of all reading” letter to Florence Nightingale, 1861

  33. Modernizing Dissemination • Open data initiative, access to microdata • Transiting from print version to multiple-platforms: web, mobile, more interactive • Catering to users at different level – user-defined data needs • Forums for discussion/inputs • From information providers to knowledge builders • Visualization • Location – specific data dissemination

  34. Data Visualization

  35. Spatial data Dissemination • Statistical Grids: • hierarchical spatial structures formed by regular cells and used to make aggregated data available ID 815959 DOM 23 POP 85 POP_H 32 POP_M 53 Source: IBGE

  36. Statistical Grid as Basis • Statistical Grids: • independence from political-administrative boundaries direct comparability • no change over time direct comparability • regular distributioncomputing efficiency • hierarchical structure allows multi-scale analyses • easily handled with GIS tools • vector or raster data structure Source: IBGE

  37. New Frontier: Dynamic Complex System Analysis

  38. Conclusions • A new world of possibilities, with new product lines and improved productivity; • Use of technology will intensify rapidly; • Incorporate Data Analytics and Complex Systems in official statistics; • Official statisticians must adopt new image; • Be prepared for Rapid Future Changes.

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